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Fast and Efficient Random Neural Network Simulator implemented in Python

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MandarGogate/RNNSim

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Overview

Random Neural Network Simulator implemented in Python.

PyPI Version PyPI License DOI

Setup

Requirements

  • Python 3.6+
  • NumPy
  • Sklearn

Installation

Install this library directly into an activated virtual environment:

$ pip install rnnsim

or add it to your Poetry project:

$ poetry add rnnsim

Usage

After installation, the package can either be used as:

from rnnsim.model import SequentialRNN

sequential_model = SequentialRNN([2, 2, 1])
sequential_model.compile()
sequential_model.fit(train_data=(X_train, y_train), epochs=50, metrics="acc")
print(sequential_model.score((X_test, y_test)))

or

from rnnsim.RNN import RNN

# define model connections
conn_plus = {
    1: [3, 4], 2: [3, 4],
    3: [5], 4: [5], 5: []}
conn_minus = {
    1: [3, 4], 2: [3, 4],
    3: [5], 4: [5], 5: []}
model = RNN(n_total=5, input_neurons=2, output_neurons=1, conn_plus=conn_plus, conn_minus=conn_minus)
model.fit(epochs=N_Iterations, train_data=(X, Y))

If you use code in your projects please cite

@misc{mandar_gogate_2019_3407836,
  author       = {Mandar Gogate},
  title        = {RNNSim: RANDOM NEURAL NETWORK SIMULATOR},
  month        = Sep,
  year         = 2019,
  doi          = {10.5281/zenodo.3407836},
  url          = {https://doi.org/10.5281/zenodo.3407836}
}

References

  1. E. Gelenbe, Random neural networks with negative and positive signals and product form solution," Neural Computation, vol. 1, no. 4, pp. 502-511, 1989.
  2. E. Gelenbe, Stability of the random neural network model," Neural Computation, vol. 2, no. 2, pp. 239-247, 1990.

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